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The aim of this task is to diagnose the chest x rays for three cases : normal, covid and virus. The classes are almost balanced and the number of images is so small with different shapes, so it is good idea to use Transfer Learning 🫁🩺.

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toqali/X-Ray_Chest_Diagnostic

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X-Ray Chest Diagnostic

The aim of this task is to diagnose the chest X-rays for three cases: normal, COVID, and virus. The classes are almost balanced, and the number of images is small with different shapes, so it is a good idea to use Transfer Learning 🫁🩺.

Task Details:

  • covid: 294 cases
  • normal: 468 cases
  • virus: 433 cases
  1. Using Resizing for Different shapes as grayscale, RGB, etc.
  2. Normalizing the images.
  3. Using a custom model.
  4. Using a pretrained model.

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The aim of this task is to diagnose the chest x rays for three cases : normal, covid and virus. The classes are almost balanced and the number of images is so small with different shapes, so it is good idea to use Transfer Learning 🫁🩺.

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